TY - JOUR
T1 - The FLoRA Engine
T2 - Using Analytics to Measure and Facilitate Learners’ Own Regulation Activities
AU - Li, Xinyu
AU - Fan, Yizhou
AU - Li, Tongguang
AU - Raković, Mladen
AU - Singh, Shaveen
AU - van der Graaf, Joep
AU - Lim, Lyn
AU - Moore, Johanna
AU - Molenaar, Inge
AU - Bannert, Maria
AU - Gašević, Dragan
N1 - Publisher Copyright:
© 2025, Society for Learning Analytics Research (SOLAR). All rights reserved.
PY - 2025/3/27
Y1 - 2025/3/27
N2 - The focus of education is increasingly on learners’ ability to regulate their own learning within technology-enhanced learning environments. Prior research has shown that self-regulated learning (SRL) leads to better learning per-formance. However, many learners struggle to productively self-regulate their learning, as they typically need to navigate the myriad of cognitive, metacognitive, and motivational processes that SRL demands. To address these challenges, the FLoRA engine is developed to help students, workers, and professionals improve their SRL skills and become productive lifelong learners. FLoRA incorporates several learning tools that are grounded in SRL theory and enhanced with learning analytics (LA), aimed at improving learners’ mastery of different SRL skills. The engine tracks learners’ SRL behaviours during a learning task and provides automated scaffolding to help learners effectively regulate their learning. The main contributions of FLoRA include (1) creating instrumentation tools that unobtrusively collect intensively sampled, fine-grained, and temporally ordered trace data about learners’ learning actions; (2) building a trace parser that uses LA and related analytical techniques (e.g., process mining) to model and understand learners’ SRL processes; and (3) providing a scaffolding module that presents analytics-based adaptive, personalized scaffolds based on students’ learning progress. The architecture and implementation of the FLoRA engine are also discussed in this paper.
AB - The focus of education is increasingly on learners’ ability to regulate their own learning within technology-enhanced learning environments. Prior research has shown that self-regulated learning (SRL) leads to better learning per-formance. However, many learners struggle to productively self-regulate their learning, as they typically need to navigate the myriad of cognitive, metacognitive, and motivational processes that SRL demands. To address these challenges, the FLoRA engine is developed to help students, workers, and professionals improve their SRL skills and become productive lifelong learners. FLoRA incorporates several learning tools that are grounded in SRL theory and enhanced with learning analytics (LA), aimed at improving learners’ mastery of different SRL skills. The engine tracks learners’ SRL behaviours during a learning task and provides automated scaffolding to help learners effectively regulate their learning. The main contributions of FLoRA include (1) creating instrumentation tools that unobtrusively collect intensively sampled, fine-grained, and temporally ordered trace data about learners’ learning actions; (2) building a trace parser that uses LA and related analytical techniques (e.g., process mining) to model and understand learners’ SRL processes; and (3) providing a scaffolding module that presents analytics-based adaptive, personalized scaffolds based on students’ learning progress. The architecture and implementation of the FLoRA engine are also discussed in this paper.
KW - Learning analytics
KW - learning tools
KW - scaffolding
KW - self-regulated learning
KW - trace data
UR - http://www.scopus.com/inward/record.url?scp=105001863764&partnerID=8YFLogxK
U2 - 10.18608/jla.2025.8349
DO - 10.18608/jla.2025.8349
M3 - Article
AN - SCOPUS:105001863764
SN - 1929-7750
VL - 12
SP - 391
EP - 413
JO - Journal of Learning Analytics
JF - Journal of Learning Analytics
IS - 1
ER -